Invention Application
- Patent Title: ROBUST MULTIMODAL SENSOR FUSION FOR AUTONOMOUS DRIVING VEHICLES
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Application No.: US16911100Application Date: 2020-06-24
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Publication No.: US20200326667A1Publication Date: 2020-10-15
- Inventor: Nilesh Ahuja , Ignacio J. Alvarez , Ranganath Krishnan , Ibrahima J. Ndiour , Mahesh Subedar , Omesh Tickoo
- Applicant: Intel Corporation
- Main IPC: G05B13/02
- IPC: G05B13/02 ; G06N3/08 ; G06N7/00 ; G06N5/04 ; G06K9/62

Abstract:
Techniques are disclosed for using neural network architectures to estimate predictive uncertainty measures, which quantify how much trust should be placed in the deep neural network (DNN) results. The techniques include measuring reliable uncertainty scores for a neural network, which are widely used in perception and decision-making tasks in automated driving. The uncertainty measurements are made with respect to both model uncertainty and data uncertainty, and may implement Bayesian neural networks or other types of neural networks.
Public/Granted literature
- US11983625B2 Robust multimodal sensor fusion for autonomous driving vehicles Public/Granted day:2024-05-14
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